Deterministic Initialization of k-means Clustering by Data Distribution Guide

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Sirikayon, Chaloemphon and Thammano, Arit (2022) Deterministic Initialization of k-means Clustering by Data Distribution Guide In: The 7th International Conference on Digital Arts, Media and Technology (DAMT) and 5th ECTI Northern Section Conference on Electrical, Electronics, Computer and Telecommunications Engineering (NCON), 26-28 January 2022.

Abstract

Clustering by the k-means is the most widely used method because of its ease of use. But the disadvantage of the k-means algorithm is that it relies on a random initialization. Therefore, the results obtained from each clustering are not stable depending on the starting point, affecting the results obtained in other applications. This paper, therefore, presents a method for determining the initialization of the k-means algorithm using the Data Distribution Guide (DDG). And use it as an aid in determining the starting point without random. Make the results of clustering always equal. And from the experimental results, We found that the accuracy obtained from clustering using the initialization from this method was good. Compared to the commonly used initialization designation.

Item Type:

Conference or Workshop Item (Paper)

Identification Number (DOI):

Subjects:

Subjects > Computer Science > Artificial Intelligence

Subjects > Computer Science > Machine Learning

Subjects > Computer Science > Neural and Evolutionary Computation

Deposited by:

Arit Thammano

Date Deposited:

2022-02-11 23:48:04

Last Modified:

2022-04-21 06:10:08

Impact and Interest:

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